TenLa: an approach based on controllable tensor decomposition and optimized lasso regression for judgement prediction of legal cases
作者:Xiaoding Guo, Hongli Zhang, Lin Ye, Shang Li
摘要
With the development of big data and artificial intelligence technology, the computer-assisted judgment of legal cases has become an inevitable trend in the intersection of computer science and law. Judgment prediction methods of legal cases mainly consist of two parts: (1) modeling of legal cases and (2) construction of judgment prediction algorithms. Previous methods for the judgment prediction of legal cases are mainly based on feature models and classification algorithms. Traditional feature models require extensive expert knowledge and manual annotation. They are highly dependent on vocabulary and grammatical information in databases, which are not conducive to the improvement of accuracy and universality of subsequent prediction algorithms. In addition, prediction results obtained by classification algorithms are coarse in granularity and low in accuracy. In general, judgments in similar legal cases are similar. This article proposes a new method for the judgment prediction of legal cases, namely, TenLa, which is based on a controllable algorithm of tensor decomposition and an optimized Lasso regression model. TenLa takes similarities between legal cases as an important indicator of judgment prediction and is mainly divided into three parts: (1) ModTen; we propose a modeling method for legal cases, namely, ModTen, which represents legal cases as three-dimensional tensors. (2) ConTen; we propose a new tensor decomposition algorithm, namely, ConTen, which decomposes tensors obtained by ModTen into core tensors through the intermediary tensor. Core tensors greatly reduce the dimensions of original tensors. (3) OLass; we propose an optimized Lasso regression algorithm, namely, OLass. Core tensors obtained by ConTen are used to train OLass. Specifically, we propose an optimization algorithm for OLass with respect to the intermediary tensor in ConTen; thus, the core tensors obtained by ConTen carry tensor elements and tensor structure information that is most conducive to the improvement of the accuracy of OLass. Experiments show that TenLa has higher accuracy than traditional judgment prediction algorithms.
论文关键词:Tensor decomposition, Lasso regression, Judgment prediction
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论文官网地址:https://doi.org/10.1007/s10489-020-01912-z